三相感应电动机的无传感器矢量控制

S. Hule, R. Bindu, D. Vincent
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引用次数: 4

摘要

本文对异步电动机的间接矢量控制进行了仿真,并利用传统的模型参考自适应系统(MRAS)对其速度进行了估计。采用神经网络PI控制器对其进行了修正。传统的基于数学模型的MRAS速度估计器可以给出相对精确的速度估计结果,但在低频运行时会产生误差。它对机器参数的变化也很敏感。因此,采用双层神经网络PI控制器(NNPIC)代替PI控制器。在投影算法的帮助下,自动调整NNPIC的参数,使两种MRAS模型之间的差异最小化,从而进行速度估计。基于神经网络的MRAS估计器在低频和参数变化情况下具有良好的鲁棒性。同时减少了PI控制器整定机构的工作量。以估计的速度作为反馈,采用空间矢量脉宽调制(SVPWM)间接矢量控制速度。仿真结果表明,感应电机驱动器的性能得到了改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sensorless vector control of three phase induction motor
In this paper, an indirect vector control of induction motor is simulated and the speed is estimated using conventional Model Reference Adaptive System (MRAS). It is modified using neural network PI controller. A conventional mathematical model based MRAS speed estimator can give a relatively precise speed estimation result, but error will occur during low frequency operation. It is also very sensitive to machine parameter variations. Hence instead of PI controller a two-layered neural network PI controller (NNPIC) is used. With the help of projection algorithm, the parameters of the NNPIC are automatically adjusted and the difference between the two models of MRAS is minimized for speed estimation. Neural network-based MRAS estimator gave robust performance during low frequency and parameter variation. Also, this scheme reduced the work of tuning mechanism of PI controller. The estimated speed was taken as a feedback and the speed was controlled by indirect vector control using space vector pulse width modulation (SVPWM). The simulation results showed improvement in the performance of an induction motor drive.
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